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Adatpvie lossy compression and classification of hyperspectral images

机译:Adatpvie有损压缩和高光谱图像分类

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摘要

In this paper several methods for image lossy compression are compared in order to find adaptive schemes that may improve compression performance for hyperspectral images under a classification accuracy constraint. Our goal is to achieve high compression ratios without degrading classification accuracy too much for a given classifier. Lossy compression methods such as JPEG, three-dimensional JPEG, a tree structured vector quantizer, a zerotree wavelet encoder, and a lattice vector quantizer have been used to compress the image before the classification stage. Classification is carried out through classification trees. Two kinds of classification trees are compared: one-stage trees, which classify the input image using only a single classification stage; and multi-stage trees, which use a mixed class that delays the classification of problematic pixels for which the accuracy achieved in the current stage is not enough. Our experiments indicate that is is possible to achieve high compression ratios while maintaining the classification accuracy. It is also shown that compression methods that take advantage of the high band correlation of hyperspectral images provide better results and become more flexible for a real case scenario. As compared to one-stage trees, the employment of multi-stage trees increases the classification accuracy and reduces the classification cost.
机译:在本文中,对几种图像有损压缩方法进行了比较,以找到在分类精度约束下可以提高高光谱图像压缩性能的自适应方案。我们的目标是实现高压缩比,而不会降低给定分类器的分类精度。在分类阶段之前,已经使用诸如JPEG,三维JPEG,树结构矢量量化器,零树小波编码器和点阵矢量量化器之类的有损压缩方法来压缩图像。通过分类树进行分类。比较了两种分类树:一阶段树,仅使用一个分类阶段对输入图像进行分类;多级树和多级树,它们使用混合类来延迟问题像素的分类,而当前阶段的精度还不够。我们的实验表明,在保持分类精度的同时,可以实现较高的压缩率。还显示出利用高光谱图像的高频带相关性的压缩方法提供了更好的结果,并且对于实际情况而言变得更加灵活。与一级树相比,多级树的使用提高了分类精度,降低了分类成本。

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